Process-Guided Deep Learning Predictions of Lake Water Temperature

被引:242
|
作者
Read, Jordan S. [1 ]
Jia, Xiaowei [2 ]
Willard, Jared [2 ]
Appling, Alison P. [1 ]
Zwart, Jacob A. [1 ]
Oliver, Samantha K. [1 ]
Karpatne, Anuj [3 ]
Hansen, Gretchen J. A. [4 ]
Hanson, Paul C. [5 ]
Watkins, William [1 ]
Steinbach, Michael [2 ]
Kumar, Vipin [2 ]
机构
[1] US Geol Survey, 959 Natl Ctr, Reston, VA 22092 USA
[2] Univ Minnesota, Dept Comp Sci & Engn, Minneapolis, MN USA
[3] Virginia Tech, Dept Comp Sci, Blacksburg, VA USA
[4] Univ Minnesota, Dept Fisheries Wildlife & Conservat Biol, Minneapolis, MN USA
[5] Univ Wisconsin, Ctr Limnol, Madison, WI 53706 USA
关键词
deep learning; lake modelling; temperature prediction; process-guided deep learning; theory-guided data science; data science; BIG DATA; NEURAL-NETWORK; DATA-DRIVEN; CLIMATE; SIMULATION; QUALITY; MODELS; FUTURE; FRAMEWORK; SCIENCE;
D O I
10.1029/2019WR024922
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The rapid growth of data in water resources has created new opportunities to accelerate knowledge discovery with the use of advanced deep learning tools. Hybrid models that integrate theory with state-of-the art empirical techniques have the potential to improve predictions while remaining true to physical laws. This paper evaluates the Process-Guided Deep Learning (PGDL) hybrid modeling framework with a use-case of predicting depth-specific lake water temperatures. The PGDL model has three primary components: a deep learning model with temporal awareness (long short-term memory recurrence), theory-based feedback (model penalties for violating conversation of energy), and model pretraining to initialize the network with synthetic data (water temperature predictions from a process-based model). In situ water temperatures were used to train the PGDL model, a deep learning (DL) model, and a process-based (PB) model. Model performance was evaluated in various conditions, including when training data were sparse and when predictions were made outside of the range in the training data set. The PGDL model performance (as measured by root-mean-square error (RMSE)) was superior to DL and PB for two detailed study lakes, but only when pretraining data included greater variability than the training period. The PGDL model also performed well when extended to 68 lakes, with a median RMSE of 1.65 degrees C during the test period (DL: 1.78 degrees C, PB: 2.03 degrees C; in a small number of lakes PB or DL models were more accurate). This case-study demonstrates that integrating scientific knowledge into deep learning tools shows promise for improving predictions of many important environmental variables.
引用
收藏
页码:9173 / 9190
页数:18
相关论文
共 50 条
  • [31] Lake Surface Temperature Predictions under Different Climate Scenarios with Machine Learning Methods: A Case Study of Qinghai Lake and Hulun Lake, China
    Li, Zhenghao
    Zhang, Zhijie
    Xiong, Shengqing
    Zhang, Wanchang
    Li, Rui
    REMOTE SENSING, 2024, 16 (17)
  • [32] Deep lake water cooling
    Fotinos, D
    2003 IEEE POWER ENGINEERING SOCIETY GENERAL MEETING, VOLS 1-4, CONFERENCE PROCEEDINGS, 2003, : 2297 - 2300
  • [33] Leveraging Deterministic Weather Forecasts for In Situ Probabilistic Temperature Predictions via Deep Learning
    Landry, David
    Charantonis, Anastase
    Monteleoni, Claire
    MONTHLY WEATHER REVIEW, 2024, 152 (09) : 1997 - 2009
  • [34] Deep predictions and transfer learning for simulation-driven structural health monitoring based on guided waves
    Hoell, Simon
    Humer, Christoph
    EXPERT SYSTEMS WITH APPLICATIONS, 2024, 238
  • [35] Guided Deep Metric Learning
    Gonzalez-Zapata, Jorge
    Reyes-Amezcua, Ivan
    Flores-Araiza, Daniel
    Mendez-Ruiz, Mauricio
    Ochoa-Ruiz, Gilberto
    Mendez-Vazquez, Andres
    2022 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS, CVPRW 2022, 2022, : 1480 - 1488
  • [36] Guided Deep Kernel Learning
    Achituve, Idan
    Chechik, Gal
    Fetaya, Ethan
    UNCERTAINTY IN ARTIFICIAL INTELLIGENCE, 2023, 216 : 11 - 21
  • [37] A strange Seiche in Koenig Lake and the peculiar Temperature Stratification of its Deep Water
    Endroes, Anton
    PETERMANNS MITTEILUNGEN, 1927, 73 (3-4): : 73 - 75
  • [38] Hydro-informer: a deep learning model for accurate water level and flood predictions
    Almikaeel, Wael
    Soltesz, Andrej
    Cubanova, Lea
    Barokova, Dana
    NATURAL HAZARDS, 2024, : 3959 - 3979
  • [39] Incorporating deep learning predictions to assess the water-energy-food nexus security
    Yunuen Raya-Tapia, Alma
    Javier Lopez-Flores, Francisco
    Maria Ponce-Ortega, Jose
    ENVIRONMENTAL SCIENCE & POLICY, 2023, 144 : 99 - 109
  • [40] Automation Process for Learning Outcome Predictions
    Han, Minh-Phuong
    Doan, Trung-Tung
    Pham, Minh-Hoan
    Nguyen, Trung-Tuan
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2024, 15 (02) : 904 - 912